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Learning Hidden Quantum Markov Models

机译:学习隐量子马尔可夫模型

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Hidden Quantum Markov Models (HQMMs) can be thought of as quantum probabilistic graphical models that can model sequential data. We extend previous work on HQMMs with three contributions: (1) we show how classical hidden Markov models (HMMs) can be simulated on a quantum circuit, (2) we reformulate HQMMs by relaxing the constraints for modeling HMMs on quantum circuits, and (3) we present a learning algorithm to estimate the parameters of an HQMM from data. While our algorithm requires further optimization to handle larger datasets, we are able to evaluate our algorithm using several synthetic datasets generated by valid HQMMs. We show that our algorithm learns HQMMs with the same number of hidden states and predictive accuracy as the HQMMs that generated the data, while HMMs learned with the Baum-Welch algorithm require more states to match the predictive accuracy.
机译:隐藏量子马尔可夫模型(HQMM)可以看作是可以对顺序数据进行建模的量子概率图形模型。我们通过以下三个方面扩展了关于HQMM的工作:(1)我们展示了如何在量子电路上模拟经典的隐马尔可夫模型(HMM);(2)通过放宽对量子电路上的HMM建模的约束来重新构造HQMM,以及( 3)我们提出了一种学习算法,可以根据数据估算HQMM的参数。尽管我们的算法需要进一步优化以处理更大的数据集,但我们仍可以使用由有效HQMM生成的几个综合数据集来评估我们的算法。我们表明,我们的算法学习的HQMM具有与生成数据的HQMM相同数量的隐藏状态和预测精度,而使用Baum-Welch算法学习的HMM需要更多状态才能匹配预测精度。

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